Пример #1
0
    def fromstring(cls, input, features=None, logic_parser=None, fstruct_reader=None,
                   encoding=None):
        """
        Return a feature structure based ``FeatureGrammar``.

        :param input: a grammar, either in the form of a string or else
        as a list of strings.
        :param features: a tuple of features (default: SLASH, TYPE)
        :param logic_parser: a parser for lambda-expressions,
        by default, ``LogicParser()``
        :param fstruct_reader: a feature structure parser
        (only if features and logic_parser is None)
        """
        if features is None:
            features = (TYPE, SLASH)

        if fstruct_reader is None:
            fstruct_reader = FeatStructReader(features, FeatStructNonterminal, FeatListNonterminal,
                                              logic_parser=logic_parser)
        elif logic_parser is not None:
            raise Exception('\'logic_parser\' and \'fstruct_reader\' must '
                            'not both be set')

        start, productions = read_grammar(input, fstruct_reader.read_partial,
                                          encoding=encoding)

        # Add the whole lexicon

        # for wordtuple, featlist in lexicon.lexicon.items():
        #     for lexent in featlist:
        #         lexlhs = lexent
        #         newprod = Production(lexlhs, ['_'.join(wordtuple)])
        #         productions.append(newprod)

        return FGGrammar(start, productions)
Пример #2
0
    def fromstring(transitions, *finals):
        """
        Constructs a BUTA from a string representation of the
        transitions.

        :type transitions: str
        :param transitions: The transitions of the tree automaton, in
            string representation

        :type finals: unicode
        :param finals: The accept states of the tree automaton

        :rtype: BUTA
        :return: The BUTA described by the parameters
        """
        _, rules = gr.read_grammar(transitions, gr.standard_nonterm_parser)
        return BUTA(rules, set(gr.Nonterminal(nt) for nt in finals))
Пример #3
0
    def fromstring(transitions, *finals):
        """
        Constructs a BUTA from a string representation of the
        transitions.

        :type transitions: str
        :param transitions: The transitions of the tree automaton, in
            string representation

        :type finals: unicode
        :param finals: The accept states of the tree automaton

        :rtype: BUTA
        :return: The BUTA described by the parameters
        """
        _, rules = gr.read_grammar(transitions, gr.standard_nonterm_parser)
        return BUTA(rules, set(gr.Nonterminal(nt) for nt in finals))
Пример #4
0
def main():
    options = parse_args()

    # parameter set 1
    #assert(options.corpus_name!=None);
    assert (options.input_directory != None)
    assert (options.output_directory != None)

    input_directory = options.input_directory
    input_directory = input_directory.rstrip("/")
    corpus_name = os.path.basename(input_directory)

    output_directory = options.output_directory
    if not os.path.exists(output_directory):
        os.mkdir(output_directory)
    output_directory = os.path.join(output_directory, corpus_name)
    if not os.path.exists(output_directory):
        os.mkdir(output_directory)

    assert (options.grammar_file != None)
    grammar_file = options.grammar_file
    assert (os.path.exists(grammar_file))

    # Documents
    train_docs = []
    input_stream = open(os.path.join(input_directory, 'train.dat'), 'r')
    for line in input_stream:
        train_docs.append(line.strip())
    input_stream.close()
    print("successfully load all training documents...")

    # parameter set 2
    if options.number_of_documents > 0:
        number_of_documents = options.number_of_documents
    else:
        number_of_documents = len(train_docs)
    if options.batch_size > 0:
        batch_size = options.batch_size
    else:
        batch_size = number_of_documents
    #assert(number_of_documents % batch_size==0);
    training_iterations = number_of_documents / batch_size
    if options.training_iterations > 0:
        training_iterations = options.training_iterations
    #training_iterations=int(math.ceil(1.0*number_of_documents/batch_size));
    #multiprocesses = options.multiprocesses;
    assert (options.number_of_processes >= 0)
    number_of_processes = options.number_of_processes

    # parameter set 3
    assert (options.grammaton_prune_interval > 0)
    grammaton_prune_interval = options.grammaton_prune_interval
    snapshot_interval = grammaton_prune_interval
    if options.snapshot_interval > 0:
        snapshot_interval = options.snapshot_interval
    assert (options.tau >= 0)
    tau = options.tau
    #assert(options.kappa>=0.5 and options.kappa<=1);
    assert (options.kappa >= 0 and options.kappa <= 1)
    kappa = options.kappa
    if batch_size <= 0:
        print("warning: running in batch mode...")
        kappa = 0

    # read in adaptor grammars
    desired_truncation_level = {}
    alpha_pi = {}
    beta_pi = {}

    grammar_rules = []
    adapted_non_terminals = set()
    #for line in codecs.open(grammar_file, 'r', encoding='utf-8'):
    for line in open(grammar_file, 'r'):
        line = line.strip()
        if line.startswith("%"):
            continue
        if line.startswith("@"):
            tokens = line.split()
            assert (len(tokens) == 5)
            adapted_non_terminal = nltk.Nonterminal(tokens[1])
            adapted_non_terminals.add(adapted_non_terminal)
            desired_truncation_level[adapted_non_terminal] = int(tokens[2])
            alpha_pi[adapted_non_terminal] = float(tokens[3])
            beta_pi[adapted_non_terminal] = float(tokens[4])
            continue
        grammar_rules.append(line)
    grammar_rules = "\n".join(grammar_rules)

    # Warning: if you are using nltk 2.x, please use parse_grammar()
    #from nltk.grammar import parse_grammar, standard_nonterm_parser
    #start, productions = parse_grammar(grammar_rules, standard_nonterm_parser, probabilistic=False)
    from nltk.grammar import read_grammar, standard_nonterm_parser
    start, productions = read_grammar(grammar_rules,
                                      standard_nonterm_parser,
                                      probabilistic=False)
    print("start, productions: ", start, productions)
    # create output directory
    now = datetime.datetime.now()
    suffix = now.strftime("%y%b%d-%H%M%S") + ""
    #desired_truncation_level_string = "".join(["%s%d" % (symbol, desired_truncation_level[symbol]) for symbol in desired_truncation_level]);
    #alpha_pi_string = "".join(["%s%d" % (symbol, alpha_pi[symbol]) for symbol in alpha_pi]);
    #beta_pi_string = "".join(["%s%d" % (symbol, beta_pi[symbol]) for symbol in beta_pi]);
    #output_directory += "-" + str(now.microsecond) + "/";
    suffix += "-D%d-P%d-S%d-B%d-O%d-t%d-k%g-G%s/" % (
        number_of_documents,
        #number_of_topics,
        grammaton_prune_interval,
        snapshot_interval,
        batch_size,
        training_iterations,
        tau,
        kappa,
        #alpha_theta,
        #alpha_pi_string,
        #beta_pi_string,
        #desired_truncation_level_string,
        os.path.basename(grammar_file))

    output_directory = os.path.join(output_directory, suffix)
    os.mkdir(os.path.abspath(output_directory))

    # store all the options to a input_stream
    options_output_file = open(output_directory + "option.txt", 'w')
    # parameter set 1
    options_output_file.write("input_directory=" + input_directory + "\n")
    options_output_file.write("corpus_name=" + corpus_name + "\n")
    options_output_file.write("grammar_file=" + str(grammar_file) + "\n")
    # parameter set 2
    options_output_file.write("number_of_processes=" +
                              str(number_of_processes) + "\n")
    #options_output_file.write("multiprocesses=" + str(multiprocesses) + "\n");
    options_output_file.write("number_of_documents=" +
                              str(number_of_documents) + "\n")
    options_output_file.write("batch_size=" + str(batch_size) + "\n")
    options_output_file.write("training_iterations=" +
                              str(training_iterations) + "\n")

    # parameter set 3
    options_output_file.write("grammaton_prune_interval=" +
                              str(grammaton_prune_interval) + "\n")
    options_output_file.write("snapshot_interval=" + str(snapshot_interval) +
                              "\n")
    options_output_file.write("tau=" + str(tau) + "\n")
    options_output_file.write("kappa=" + str(kappa) + "\n")

    # parameter set 4
    #options_output_file.write("alpha_theta=" + str(alpha_theta) + "\n");
    options_output_file.write("alpha_pi=%s\n" % alpha_pi)
    options_output_file.write("beta_pi=%s\n" % beta_pi)
    options_output_file.write("desired_truncation_level=%s\n" %
                              desired_truncation_level)
    # parameter set 5
    #options_output_file.write("heldout_data=" + str(heldout_data) + "\n");
    options_output_file.close()

    print("========== ========== ========== ========== ==========")
    # parameter set 1
    print("output_directory=" + output_directory)
    print("input_directory=" + input_directory)
    print("corpus_name=" + corpus_name)
    print("grammar_file=" + str(grammar_file))

    # parameter set 2
    print("number_of_documents=" + str(number_of_documents))
    print("batch_size=" + str(batch_size))
    print("training_iterations=" + str(training_iterations))
    print("number_of_processes=" + str(number_of_processes))
    #print("multiprocesses=" + str(multiprocesses)

    # parameter set 3
    print("grammaton_prune_interval=" + str(grammaton_prune_interval))
    print("snapshot_interval=" + str(snapshot_interval))
    print("tau=" + str(tau))
    print("kappa=" + str(kappa))

    # parameter set 4
    #print("alpha_theta=" + str(alpha_theta)
    print("alpha_pi=%s" % alpha_pi)
    print("beta_pi=%s" % beta_pi)
    print("desired_truncation_level=%s" % desired_truncation_level)
    # parameter set 5
    #print("heldout_data=" + str(heldout_data)
    print("========== ========== ========== ========== ==========")

    import hybrid
    print("passing prodcutions = : ", productions)
    adagram_inferencer = hybrid.Hybrid(start, productions,
                                       adapted_non_terminals)

    adagram_inferencer._initialize(number_of_documents, batch_size, tau, kappa,
                                   alpha_pi, beta_pi, None,
                                   desired_truncation_level,
                                   grammaton_prune_interval)
    '''
    clock_iteration = time.time();
    clock_e_step, clock_m_step = adagram_inferencer.seed(train_docs);
    clock_iteration = time.time()-clock_iteration;
    print('E-step, M-step and Seed take %g, %g and %g seconds respectively...' % (clock_e_step, clock_m_step, clock_iteration);p
    '''

    #adagram_inferencer.export_adaptor_grammar(os.path.join(output_directory, "infag-0"))
    #adagram_inferencer.export_aggregated_adaptor_grammar(os.path.join(output_directory, "ag-0"))

    random.shuffle(train_docs)
    training_clock = time.time()
    snapshot_clock = time.time()
    for iteration in range(int(training_iterations)):
        start_index = batch_size * iteration
        end_index = batch_size * (iteration + 1)
        if start_index / number_of_documents < end_index / number_of_documents:
            #train_doc_set = train_docs[(batch_size * iteration) % (number_of_documents) :] + train_docs[: (batch_size * (iteration+1)) % (number_of_documents)];
            train_doc_set = train_docs[(batch_size * iteration) %
                                       (number_of_documents):]
            random.shuffle(train_docs)
            train_doc_set += train_docs[:(batch_size * (iteration + 1)) %
                                        (number_of_documents)]
        else:
            train_doc_set = train_docs[(batch_size * iteration) %
                                       (number_of_documents):
                                       (batch_size *
                                        (iteration + 1)) % number_of_documents]

        clock_iteration = time.time()
        #print("processing document:", train_doc_set
        clock_e_step, clock_m_step = adagram_inferencer.learning(
            train_doc_set, number_of_processes)

        if (iteration + 1) % snapshot_interval == 0:
            #pickle_file = open(os.path.join(output_directory, "model-%d" % (adagram_inferencer._counter+1)), 'wb');
            #pickle.dump(adagram_inferencer, pickle_file);
            #pickle_file.close();
            adagram_inferencer.export_adaptor_grammar(
                os.path.join(output_directory, "infag-" + str(
                    (iteration + 1))))
            #adagram_inferencer.export_aggregated_adaptor_grammar(os.path.join(output_directory, "ag-" + str((iteration+1))))

        if (iteration + 1) % 1000 == 0:
            snapshot_clock = time.time() - snapshot_clock
            print('Processing 1000 mini-batches take %g seconds...' %
                  (snapshot_clock))
            snapshot_clock = time.time()

        clock_iteration = time.time() - clock_iteration
        print(
            'E-step, M-step and iteration %d take %g, %g and %g seconds respectively...'
            % (adagram_inferencer._counter, clock_e_step, clock_m_step,
               clock_iteration))

    adagram_inferencer.export_adaptor_grammar(
        os.path.join(output_directory,
                     "infag-" + str(adagram_inferencer._counter + 1)))
    #adagram_inferencer.export_aggregated_adaptor_grammar(os.path.join(output_directory, "ag-" + str((iteration+1))))

    pickle_file = open(
        os.path.join(output_directory, "model-%d" % (iteration + 1)), 'wb')
    pickle.dump(adagram_inferencer, pickle_file)
    pickle_file.close()

    training_clock = time.time() - training_clock
    print('Training finished in %g seconds...' % (training_clock))
Пример #5
0
def main():
    options = parse_args();

    # parameter set 1
    #assert(options.corpus_name!=None);
    assert(options.input_directory!=None);
    assert(options.output_directory!=None);
    
    input_directory = options.input_directory;
    input_directory = input_directory.rstrip("/");
    corpus_name = os.path.basename(input_directory);
    
    output_directory = options.output_directory;
    if not os.path.exists(output_directory):
        os.mkdir(output_directory);
    output_directory = os.path.join(output_directory, corpus_name);
    if not os.path.exists(output_directory):
        os.mkdir(output_directory);

    assert(options.grammar_file!=None);
    grammar_file = options.grammar_file;
    assert(os.path.exists(grammar_file));
    
    # Documents
    train_docs = [];
    input_stream = open(os.path.join(input_directory, 'train.dat'), 'r');
    for line in input_stream:
        train_docs.append(line.strip());
    input_stream.close();
    print "successfully load all training documents..."
    
    # parameter set 2
    if options.number_of_documents>0:
        number_of_documents = options.number_of_documents;
    else:
        number_of_documents = len(train_docs)
    if options.batch_size>0:
        batch_size = options.batch_size;
    else:
        batch_size = number_of_documents
    #assert(number_of_documents % batch_size==0);
    training_iterations=number_of_documents/batch_size;
    if options.training_iterations>0:
        training_iterations=options.training_iterations;
    #training_iterations=int(math.ceil(1.0*number_of_documents/batch_size));
    #multiprocesses = options.multiprocesses;
    assert(options.number_of_processes>=0);
    number_of_processes = options.number_of_processes;    

    # parameter set 3
    assert(options.grammaton_prune_interval>0);
    grammaton_prune_interval = options.grammaton_prune_interval;
    snapshot_interval = grammaton_prune_interval;
    if options.snapshot_interval>0:
        snapshot_interval=options.snapshot_interval;
    assert(options.tau>=0);
    tau = options.tau;
    #assert(options.kappa>=0.5 and options.kappa<=1);
    assert(options.kappa>=0 and options.kappa<=1);
    kappa = options.kappa;
    if batch_size<=0:
        print "warning: running in batch mode..."
        kappa = 0;

    # read in adaptor grammars
    desired_truncation_level = {};
    alpha_pi = {};
    beta_pi = {};
    
    grammar_rules = [];
    adapted_non_terminals = set();
    #for line in codecs.open(grammar_file, 'r', encoding='utf-8'):
    for line in open(grammar_file, 'r'):
        line = line.strip();
        if line.startswith("%"):
            continue;
        if line.startswith("@"):
            tokens = line.split();
            assert(len(tokens)==5);
            adapted_non_terminal = nltk.Nonterminal(tokens[1]);
            adapted_non_terminals.add(adapted_non_terminal);
            desired_truncation_level[adapted_non_terminal] = int(tokens[2]);
            alpha_pi[adapted_non_terminal] = float(tokens[3]);
            beta_pi[adapted_non_terminal] = float(tokens[4]);
            continue;
        grammar_rules.append(line);
    grammar_rules = "\n".join(grammar_rules)

    # Warning: if you are using nltk 2.x, please use parse_grammar()
    #from nltk.grammar import parse_grammar, standard_nonterm_parser
    #start, productions = parse_grammar(grammar_rules, standard_nonterm_parser, probabilistic=False)
    from nltk.grammar import read_grammar, standard_nonterm_parser
    start, productions = read_grammar(grammar_rules, standard_nonterm_parser, probabilistic=False)

    # create output directory
    now = datetime.datetime.now();
    suffix = now.strftime("%y%b%d-%H%M%S")+"";
    #desired_truncation_level_string = "".join(["%s%d" % (symbol, desired_truncation_level[symbol]) for symbol in desired_truncation_level]);
    #alpha_pi_string = "".join(["%s%d" % (symbol, alpha_pi[symbol]) for symbol in alpha_pi]);
    #beta_pi_string = "".join(["%s%d" % (symbol, beta_pi[symbol]) for symbol in beta_pi]);
    #output_directory += "-" + str(now.microsecond) + "/";
    suffix += "-D%d-P%d-S%d-B%d-O%d-t%d-k%g-G%s/" % (number_of_documents,
                                                    #number_of_topics,
                                                    grammaton_prune_interval,
                                                    snapshot_interval,
                                                    batch_size,
                                                    training_iterations,
                                                    tau,
                                                    kappa,
                                                    #alpha_theta,
                                                    #alpha_pi_string,
                                                    #beta_pi_string,
                                                    #desired_truncation_level_string,
                                                    os.path.basename(grammar_file)
                                                     );

    output_directory = os.path.join(output_directory, suffix);
    os.mkdir(os.path.abspath(output_directory));
        
    # store all the options to a input_stream
    options_output_file = open(output_directory + "option.txt", 'w');
    # parameter set 1
    options_output_file.write("input_directory=" + input_directory + "\n");
    options_output_file.write("corpus_name=" + corpus_name + "\n");
    options_output_file.write("grammar_file=" + str(grammar_file) + "\n");
    # parameter set 2
    options_output_file.write("number_of_processes=" + str(number_of_processes) + "\n");
    #options_output_file.write("multiprocesses=" + str(multiprocesses) + "\n");
    options_output_file.write("number_of_documents=" + str(number_of_documents) + "\n");
    options_output_file.write("batch_size=" + str(batch_size) + "\n");
    options_output_file.write("training_iterations=" + str(training_iterations) + "\n");

    # parameter set 3
    options_output_file.write("grammaton_prune_interval=" + str(grammaton_prune_interval) + "\n");
    options_output_file.write("snapshot_interval=" + str(snapshot_interval) + "\n");
    options_output_file.write("tau=" + str(tau) + "\n");
    options_output_file.write("kappa=" + str(kappa) + "\n");

    # parameter set 4
    #options_output_file.write("alpha_theta=" + str(alpha_theta) + "\n");
    options_output_file.write("alpha_pi=%s\n" % alpha_pi);
    options_output_file.write("beta_pi=%s\n" % beta_pi);
    options_output_file.write("desired_truncation_level=%s\n" % desired_truncation_level);
    # parameter set 5    
    #options_output_file.write("heldout_data=" + str(heldout_data) + "\n");
    options_output_file.close()
    
    print "========== ========== ========== ========== =========="
    # parameter set 1
    print "output_directory=" + output_directory
    print "input_directory=" + input_directory
    print "corpus_name=" + corpus_name
    print "grammar_file=" + str(grammar_file)
    
    # parameter set 2
    print "number_of_documents=" + str(number_of_documents)
    print "batch_size=" + str(batch_size)
    print "training_iterations=" + str(training_iterations)
    print "number_of_processes=" + str(number_of_processes)
    #print "multiprocesses=" + str(multiprocesses)
    
    # parameter set 3
    print "grammaton_prune_interval=" + str(grammaton_prune_interval)
    print "snapshot_interval=" + str(snapshot_interval);
    print "tau=" + str(tau)
    print "kappa=" + str(kappa)
    
    # parameter set 4
    #print "alpha_theta=" + str(alpha_theta)
    print "alpha_pi=%s" % alpha_pi
    print "beta_pi=%s" % beta_pi
    print "desired_truncation_level=%s" % desired_truncation_level
    # parameter set 5
    #print "heldout_data=" + str(heldout_data)
    print "========== ========== ========== ========== =========="
    
    import hybrid;
    adagram_inferencer = hybrid.Hybrid(start,
                                       productions,
                                       adapted_non_terminals
                                       );
                                                                                              
    adagram_inferencer._initialize(number_of_documents,
                                   batch_size,
                                   tau,
                                   kappa,
                                   alpha_pi,
                                   beta_pi,
                                   None,
                                   desired_truncation_level,
                                   grammaton_prune_interval
                                   );
                                        
    '''
    clock_iteration = time.time();
    clock_e_step, clock_m_step = adagram_inferencer.seed(train_docs);
    clock_iteration = time.time()-clock_iteration;
    print 'E-step, M-step and Seed take %g, %g and %g seconds respectively...' % (clock_e_step, clock_m_step, clock_iteration);p
    '''
    
    #adagram_inferencer.export_adaptor_grammar(os.path.join(output_directory, "infag-0"))
    #adagram_inferencer.export_aggregated_adaptor_grammar(os.path.join(output_directory, "ag-0"))
    
    random.shuffle(train_docs);    
    training_clock = time.time();
    snapshot_clock = time.time();
    for iteration in xrange(training_iterations):
        start_index = batch_size * iteration;
        end_index = batch_size * (iteration + 1);
        if start_index / number_of_documents < end_index / number_of_documents:
            #train_doc_set = train_docs[(batch_size * iteration) % (number_of_documents) :] + train_docs[: (batch_size * (iteration+1)) % (number_of_documents)];
            train_doc_set = train_docs[(batch_size * iteration) % (number_of_documents) :];
            random.shuffle(train_docs);
            train_doc_set += train_docs[: (batch_size * (iteration+1)) % (number_of_documents)];
        else:
            train_doc_set = train_docs[(batch_size * iteration) % (number_of_documents) : (batch_size * (iteration+1)) % number_of_documents];

        clock_iteration = time.time();
        #print "processing document:", train_doc_set
        clock_e_step, clock_m_step = adagram_inferencer.learning(train_doc_set, number_of_processes);
        
        if (iteration+1)%snapshot_interval==0:
            #cpickle_file = open(os.path.join(output_directory, "model-%d" % (adagram_inferencer._counter+1)), 'wb');
            #cPickle.dump(adagram_inferencer, cpickle_file);
            #cpickle_file.close();
            adagram_inferencer.export_adaptor_grammar(os.path.join(output_directory, "infag-" + str((iteration+1))))
            #adagram_inferencer.export_aggregated_adaptor_grammar(os.path.join(output_directory, "ag-" + str((iteration+1))))
        
        if (iteration+1) % 1000==0:
            snapshot_clock = time.time() - snapshot_clock;
            print 'Processing 1000 mini-batches take %g seconds...' % (snapshot_clock);
            snapshot_clock = time.time()
    
        clock_iteration = time.time()-clock_iteration;
        print 'E-step, M-step and iteration %d take %g, %g and %g seconds respectively...' % (adagram_inferencer._counter, clock_e_step, clock_m_step, clock_iteration);
    
    adagram_inferencer.export_adaptor_grammar(os.path.join(output_directory, "infag-" + str(adagram_inferencer._counter+1)))
    #adagram_inferencer.export_aggregated_adaptor_grammar(os.path.join(output_directory, "ag-" + str((iteration+1))))

    cpickle_file = open(os.path.join(output_directory, "model-%d" % (iteration+1)), 'wb');
    cPickle.dump(adagram_inferencer, cpickle_file);
    cpickle_file.close();
    
    training_clock = time.time()-training_clock;
    print 'Training finished in %g seconds...' % (training_clock);